Presentation is loading. Please wait.

Presentation is loading. Please wait.

Applied Probability Lecture 5 Tina Kapur

Similar presentations


Presentation on theme: "Applied Probability Lecture 5 Tina Kapur"— Presentation transcript:

1 Applied Probability Lecture 5 Tina Kapur tkapur@ai.mit.edu

2 Review Timeline/Administrivia Friday: vocabulary, Matlab Monday: start medical segmentation project Tuesday: complete project Wednesday: 10am exam Lecture: 10am-11am, Lab: 11am-12:30pm Homework (matlab programs): –PS 4: due 10am Monday –PS 5(project): due 12:30pm Tuesday

3 Review Friday: Vocabulary Random variable Discrete vs. continuous random variable PDF Uniform PDF Gaussian PDF Bayes rule / Conditional probability Marginal Probability

4 Gaussian PDF

5 Objective Probabilistic Segmentation of MRI images.

6 Objective Probabilistic Segmentation of MRI images.

7 Today and Tomorrow Lecture: Bayesian Segmentation of MRI –Inputs and outputs –Mechanics Lab/Recitation: Implementation using Matlab.

8 Bayesian Segmentation of MRI: Inputs and Outputs

9 Input: 256x256 MRI image

10 Bayesian Segmentation of MRI: Inputs and Outputs Input: 256x256 MRI image Given knowledge base – # classes 3: WM (1), GM (2), CSF(3) –Training data (manual segmentations)

11 Bayesian Segmentation of MRI: Inputs and Outputs Input: 256x256 MRI image Given knowledge base – # classes 3: WM (1), GM (2), CSF(3) –Training data (manual segmentations) Output: segmented image with labels 1,2,3.

12 Bayes Rule for Segmentation

13 In MRI Segmentation:

14 Bayes Rule for Segmentation In MRI Segmentation: What is P(x|  P  P(  x 

15 Bayesian Segmentation of MRI: Mechanics Create class-conditional Gaussian density models from training data

16 Bayesian Segmentation of MRI: Mechanics Create class-conditional Gaussian density models from training data Use Uniform priors on the classes

17 Bayesian Segmentation of MRI: Mechanics Create class-conditional Gaussian density models from training data Use Uniform priors on the classes Use Bayes rule to compute Posterior probabilities for each class

18 Bayesian Segmentation of MRI: Mechanics Create class-conditional Gaussian density models from training data Use Uniform priors on the classes Use Bayes rule to compute Posterior probabilities for each class Assign label of M-A-P class => segmentation

19 Recitation/Lab Start MRI Segmentation Lab


Download ppt "Applied Probability Lecture 5 Tina Kapur"

Similar presentations


Ads by Google